Department of Neurology, School of Medicine, University of California-San Francisco, 513 Parnassus Avenue, San Francisco, CA 94143-0435, USA.
Brain. 2010 Sep;133(9):2603-11. doi: 10.1093/brain/awq192.
Glutamate is the main excitatory neurotransmitter in the mammalian brain. Appropriate transmission of nerve impulses through glutamatergic synapses is required throughout the brain and forms the basis of many processes including learning and memory. However, abnormally high levels of extracellular brain glutamate can lead to neuroaxonal cell death. We have previously reported elevated glutamate levels in the brains of patients suffering from multiple sclerosis. Here two complementary analyses to assess the extent of genomic control over glutamate levels were used. First, a genome-wide association analysis in 382 patients with multiple sclerosis using brain glutamate concentration as a quantitative trait was conducted. In a second approach, a protein interaction network was used to find associated genes within the same pathway. The top associated marker was rs794185 (P < 6.44 x 10(-7)), a non-coding single nucleotide polymorphism within the gene sulphatase modifying factor 1. Our pathway approach identified a module composed of 70 genes with high relevance to glutamate biology. Individuals carrying a higher number of associated alleles from genes in this module showed the highest levels of glutamate. These individuals also showed greater decreases in N-acetylaspartate and in brain volume over 1 year of follow-up. Patients were then stratified by the amount of annual brain volume loss and the same approach was performed in the 'high' (n = 250) and 'low' (n = 132) neurodegeneration groups. The association with rs794185 was highly significant in the group with high neurodegeneration. Further, results from the network-based pathway analysis remained largely unchanged even after stratification. Results from these analyses indicated that variance in the activity of neurochemical pathways implicated in neurodegeneration is explained, at least in part, by the inheritance of common genetic polymorphisms. Spectroscopy-based imaging provides a novel quantitative endophenotype for genetic association studies directed towards identifying new factors that contribute to the heterogeneity of clinical expression of multiple sclerosis.
谷氨酸是哺乳动物大脑中的主要兴奋性神经递质。适当的神经冲动通过谷氨酸能突触传递是大脑中所必需的,并且是包括学习和记忆在内的许多过程的基础。然而,细胞外脑谷氨酸水平异常升高可导致神经轴突细胞死亡。我们之前报道过多发性硬化症患者的大脑中谷氨酸水平升高。在此,我们使用了两种互补的分析方法来评估基因组对谷氨酸水平的控制程度。首先,我们对 382 名多发性硬化症患者进行了全基因组关联分析,将大脑谷氨酸浓度作为定量性状进行分析。其次,我们使用蛋白质相互作用网络在相同途径中寻找相关基因。关联的最高标记物是 rs794185(P<6.44×10(-7)),它是基因硫酸盐修饰因子 1 内的非编码单核苷酸多态性。我们的途径方法鉴定了一个由 70 个与谷氨酸生物学高度相关的基因组成的模块。携带该模块中基因相关等位基因数量较多的个体显示出最高的谷氨酸水平。这些个体在 1 年的随访过程中也表现出更高的 N-乙酰天门冬氨酸和脑体积减少。然后根据每年脑体积损失的数量对患者进行分层,并在“高”(n=250)和“低”(n=132)神经退行性组中进行相同的方法。在高神经退行性组中,rs794185 的关联非常显著。此外,即使在分层后,基于网络的途径分析的结果仍然基本保持不变。这些分析的结果表明,神经化学途径的活性变化在一定程度上可以通过常见遗传多态性的遗传来解释,这些途径与神经退行性变有关。基于波谱的成像为遗传关联研究提供了一种新的定量表型,用于识别有助于多发性硬化症临床表现异质性的新因素。